Stats, Vol. 8, Pages 59: The Detection Method of the Tobit Model in a Dataset


Stats, Vol. 8, Pages 59: The Detection Method of the Tobit Model in a Dataset

Stats doi: 10.3390/stats8030059

Authors:
El ouali Rahmani
Mohammed Benmoumen

This article proposes an extension of detection methods for the Tobit model by generalizing existing approaches from cases with known parameters to more realistic scenarios where the parameters are unknown. The main objective is to develop detection procedures that account for parameter uncertainty and to analyze how this uncertainty affects the estimation process and the overall accuracy of the model. The methodology relies on maximum likelihood estimation, applied to datasets generated under different configurations of the Tobit model. A series of Monte Carlo simulations is conducted to evaluate the performance of the proposed methods. The results provide insights into the robustness of the detection procedures under varying assumptions. The study concludes with practical recommendations for improving the application of the Tobit model in fields such as econometrics, health economics, and environmental studies.



Source link

El ouali Rahmani www.mdpi.com